Department of Neurosurgery, Medical University of Vienna, Vienna, Austria.
Center for Medical Physics and Biomedical Engineering, Medical University Vienna, Vienna, Austria.
Front Endocrinol (Lausanne). 2021 Oct 18;12:730100. doi: 10.3389/fendo.2021.730100. eCollection 2021.
Despite advancements of intraoperative visualization, the difficulty to visually distinguish adenoma from adjacent pituitary gland due to textural similarities may lead to incomplete adenoma resection or impairment of pituitary function. The aim of this study was to investigate optical coherence tomography (OCT) imaging in combination with a convolutional neural network (CNN) for objectively identify pituitary adenoma tissue in an setting.
A prospective study was conducted to train and test a CNN algorithm to identify pituitary adenoma tissue in OCT images of adenoma and adjacent pituitary gland samples. From each sample, 500 slices of adjacent cross-sectional OCT images were used for CNN classification.
OCT data acquisition was feasible in 19/20 (95%) patients. The 16.000 OCT slices of 16/19 of cases were employed for creating a trained CNN algorithm (70% for training, 15% for validating the classifier). Thereafter, the classifier was tested on the paired samples of three patients (3.000 slices). The CNN correctly predicted adenoma in the 3 adenoma samples (98%, 100% and 84% respectively), and correctly predicted gland and transition zone in the 3 samples from the adjacent pituitary gland.
Trained convolutional neural network computing has the potential for fast and objective identification of pituitary adenoma tissue in OCT images with high sensitivity . However, further investigation with larger number of samples is required.
尽管术中可视化技术不断进步,但由于组织相似性,视觉上难以区分腺瘤与相邻的垂体组织,这可能导致腺瘤切除不完全或垂体功能受损。本研究旨在探讨光相干断层扫描(OCT)成像与卷积神经网络(CNN)相结合,以客观识别 环境中垂体腺瘤组织。
前瞻性研究旨在训练和测试 CNN 算法,以识别腺瘤和相邻垂体组织样本的 OCT 图像中的垂体腺瘤组织。从每个样本中,使用 500 张相邻的横截面 OCT 图像进行 CNN 分类。
19/20(95%)患者可行 OCT 数据采集。16 名患者中的 16000 张 OCT 切片用于创建经过训练的 CNN 算法(70%用于训练,15%用于验证分类器)。然后,对 3 名患者的配对样本(3000 张切片)进行分类器测试。CNN 正确预测了 3 个腺瘤样本中的腺瘤(分别为 98%、100%和 84%),正确预测了 3 个相邻垂体样本中的腺体和过渡区。
经过训练的卷积神经网络计算具有快速、客观识别 OCT 图像中垂体腺瘤组织的潜力,具有较高的敏感性。但是,需要进一步研究更多的样本。